Geodesic Gramian Denoising Applied to the Images Contaminated With Noise Sampled From Diverse Probability Distributions

Yonggi Park, K. Gajamannage, Alexey L. Sadovski
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引用次数: 1

Abstract

As quotidian use of sophisticated cameras surges, people in modern society are more interested in capturing fine-quality images. However, the quality of the images might be inferior to people's expectations due to the noise contamination in the images. Thus, filtering out the noise while preserving vital image features is an essential requirement. Current existing denoising methods have their own assumptions on the probability distribution in which the contaminated noise is sampled for the method to attain its expected denoising performance. In this paper, we utilize our recent Gramian-based filtering scheme to remove noise sampled from five prominent probability distributions from selected images. This method preserves image smoothness by adopting patches partitioned from the image, rather than pixels, and retains vital image features by performing denoising on the manifold underlying the patch space rather than in the image domain. We validate its denoising performance, using three benchmark computer vision test images applied to two state-of-the-art denoising methods, namely BM3D and K-SVD.
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测地线格兰曼去噪在不同概率分布中被噪声污染图像中的应用
随着精密相机的日常使用激增,现代社会的人们对捕捉高质量图像更感兴趣。然而,由于图像中的噪声污染,图像的质量可能会低于人们的期望。因此,在保留重要图像特征的同时滤除噪声是一个基本要求。现有的去噪方法对污染噪声采样的概率分布有自己的假设,以达到预期的去噪效果。在本文中,我们利用我们最近的基于gramian的滤波方案从选定的图像中去除从五个突出的概率分布中采样的噪声。该方法通过采用从图像中分割的小块而不是像素来保持图像的平滑性,并通过在小块空间下的流形上而不是在图像域上进行去噪来保留重要的图像特征。我们验证了它的去噪性能,使用三个基准计算机视觉测试图像应用于两种最先进的去噪方法,即BM3D和K-SVD。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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